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%matplotlib inline
from IPython.display import HTML,Image,SVG,YouTubeVideo
%matplotlib inline
from IPython.display import HTML,Image,SVG,YouTubeVideo
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from skimage import data
import numpy as np
from skimage.morphology import disk
import skimage.filters.rank as skr
from skimage.measure import label
from skimage.morphology import watershed
from skimage.io import imread
from scipy import ndimage as ndi
import matplotlib.pyplot as plt
from skimage.segmentation import mark_boundaries
from skimage import data
import numpy as np
from skimage.morphology import disk
import skimage.filters.rank as skr
from skimage.measure import label
from skimage.morphology import watershed
from skimage.io import imread
from scipy import ndimage as ndi
import matplotlib.pyplot as plt
from skimage.segmentation import mark_boundaries
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# segment the coins
im = data.coins()
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# segment the coins
im = data.coins()
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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# detect the eyes / nose
im = data.chelsea()
plt.imshow(im);
# detect the eyes / nose
im = data.chelsea()
plt.imshow(im);
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# counting the galaxies
im = data.hubble_deep_field()
plt.imshow(im);
# counting the galaxies
im = data.hubble_deep_field()
plt.imshow(im);
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im = data.page()
bg = skr.median(im, disk(10))
res = (1.*im/bg) < .8
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
plt.figure()
plt.imshow(bg,cmap=plt.cm.gray);
plt.colorbar()
plt.figure()
plt.imshow(res.astype(np.uint8),cmap=plt.cm.gray);
plt.colorbar();
im = data.page()
bg = skr.median(im, disk(10))
res = (1.*im/bg) < .8
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
plt.figure()
plt.imshow(bg,cmap=plt.cm.gray);
plt.colorbar()
plt.figure()
plt.imshow(res.astype(np.uint8),cmap=plt.cm.gray);
plt.colorbar();
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# segment the cells
im = imread('../data/dh_phase.png')
th = im>150
th1 = im>100
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
plt.figure()
plt.imshow(1.*th+th1,cmap=plt.cm.gray)
plt.colorbar();
# segment the cells
im = imread('../data/dh_phase.png')
th = im>150
th1 = im>100
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
plt.figure()
plt.imshow(1.*th+th1,cmap=plt.cm.gray)
plt.colorbar();
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from skimage.feature import canny
ca = canny(im)
plt.figure(figsize=[10,10])
plt.imshow(ca,cmap=plt.cm.gray);
from skimage.feature import canny
ca = canny(im)
plt.figure(figsize=[10,10])
plt.imshow(ca,cmap=plt.cm.gray);
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from skimage.morphology import watershed
from skimage.segmentation import mark_boundaries
lab,n_lab = label(th,return_num=True)
bg = th1==0
lab[bg] = n_lab+1
#med = skr.median(im,disk(5))
#gr = skr.gradient(med,disk(3))
ws = watershed(255-im,lab)
plt.imshow(mark_boundaries(im,ws))
from skimage.morphology import watershed
from skimage.segmentation import mark_boundaries
lab,n_lab = label(th,return_num=True)
bg = th1==0
lab[bg] = n_lab+1
#med = skr.median(im,disk(5))
#gr = skr.gradient(med,disk(3))
ws = watershed(255-im,lab)
plt.imshow(mark_boundaries(im,ws))
/home/olivier/.conda/envs/py3/lib/python3.7/site-packages/skimage/morphology/_deprecated.py:5: skimage_deprecation: Function ``watershed`` is deprecated and will be removed in version 0.19. Use ``skimage.segmentation.watershed`` instead. def watershed(image, markers=None, connectivity=1, offset=None, mask=None,
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<matplotlib.image.AxesImage at 0x7f6806a3b190>
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im = imread('../data/exp0001.jpg')
plt.figure(figsize=[20,20])
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
im = imread('../data/exp0001.jpg')
plt.figure(figsize=[20,20])
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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# count red and yellow flowers
im = imread('../data/flowers.jpg')
plt.imshow(im)
plt.colorbar();
# count red and yellow flowers
im = imread('../data/flowers.jpg')
plt.imshow(im)
plt.colorbar();
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# find the fiber orientation
im = imread('../data/image4.png')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# find the fiber orientation
im = imread('../data/image4.png')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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from IPython.display import YouTubeVideo
YouTubeVideo('PUcz11MLxUk', start=0, autoplay=1, theme="light", color="blue",)
from IPython.display import YouTubeVideo
YouTubeVideo('PUcz11MLxUk', start=0, autoplay=1, theme="light", color="blue",)
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# detect stroma
im = imread('../data/Rp042826d.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# detect stroma
im = imread('../data/Rp042826d.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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# segment the flowers
im = imread('../data/KaneFlowers.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# segment the flowers
im = imread('../data/KaneFlowers.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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from skimage.morphology import watershed
from skimage.segmentation import mark_boundaries
gr = skr.gradient(im,disk(3))
local_min = im <= skr.minimum(im,disk(5))
lab = label(local_min)
#med = skr.median(im,disk(5))
ws = watershed(gr,lab)
plt.figure(figsize=[10,10])
plt.imshow(mark_boundaries(im,ws))
#plt.imshow(local_min)
from skimage.morphology import watershed
from skimage.segmentation import mark_boundaries
gr = skr.gradient(im,disk(3))
local_min = im <= skr.minimum(im,disk(5))
lab = label(local_min)
#med = skr.median(im,disk(5))
ws = watershed(gr,lab)
plt.figure(figsize=[10,10])
plt.imshow(mark_boundaries(im,ws))
#plt.imshow(local_min)
/home/olivier/.conda/envs/py3/lib/python3.7/site-packages/skimage/morphology/_deprecated.py:5: skimage_deprecation: Function ``watershed`` is deprecated and will be removed in version 0.19. Use ``skimage.segmentation.watershed`` instead. def watershed(image, markers=None, connectivity=1, offset=None, mask=None,
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<matplotlib.image.AxesImage at 0x7f67fffcf6d0>
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rgb = imread('../data/4colors.JPG')
plt.figure(figsize=[20,20])
plt.imshow(rgb)
plt.colorbar();
rgb = imread('../data/4colors.JPG')
plt.figure(figsize=[20,20])
plt.imshow(rgb)
plt.colorbar();
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r = skr.median(rgb[:,:,0],disk(1))
plt.imshow(r,cmap=plt.cm.gray)
r = skr.median(rgb[:,:,0],disk(1))
plt.imshow(r,cmap=plt.cm.gray)
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<matplotlib.image.AxesImage at 0x7f6804a877d0>
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s = rgb.sum(axis=2)
th = s > 100
#post-processing
pth = skr.minimum(th.astype(np.uint8),disk(1))
plt.figure(figsize=[20,20])
plt.imshow(pth,cmap=plt.cm.gray)
plt.colorbar()
s = rgb.sum(axis=2)
th = s > 100
#post-processing
pth = skr.minimum(th.astype(np.uint8),disk(1))
plt.figure(figsize=[20,20])
plt.imshow(pth,cmap=plt.cm.gray)
plt.colorbar()
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<matplotlib.colorbar.Colorbar at 0x7f6804bdcb10>
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lab = label(pth)
lut = np.arange(0,np.max(lab)+1)
plt.imshow(lab)
plt.colorbar()
mask = lab == 20
plt.imshow(mask)
lab = label(pth)
lut = np.arange(0,np.max(lab)+1)
plt.imshow(lab)
plt.colorbar()
mask = lab == 20
plt.imshow(mask)
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<matplotlib.image.AxesImage at 0x7f6804ec9e90>
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from random import shuffle
shuffle(lut)
from random import shuffle
shuffle(lut)
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shuffle(lut)
plt.imshow(lut[lab])
plt.colorbar()
shuffle(lut)
plt.imshow(lut[lab])
plt.colorbar()
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<matplotlib.colorbar.Colorbar at 0x7f680512b990>
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# segment the cell
im = imread('../data/exp0001crop.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# segment the cell
im = imread('../data/exp0001crop.jpg')
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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m = skr.median(im,disk(5))
plt.imshow(m,cmap=plt.cm.gray)
plt.colorbar()
m = skr.median(im,disk(5))
plt.imshow(m,cmap=plt.cm.gray)
plt.colorbar()
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<matplotlib.colorbar.Colorbar at 0x7f6804c08990>
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th1 = m < 90
th2 = np.bitwise_and(110 > m,m < 130)
plt.imshow(th2)
th1 = m < 90
th2 = np.bitwise_and(110 > m,m < 130)
plt.imshow(th2)
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<matplotlib.image.AxesImage at 0x7f6804d23c90>
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markers = label(th2)
plt.imshow(markers)
plt.colorbar()
markers = label(th2)
plt.imshow(markers)
plt.colorbar()
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<matplotlib.colorbar.Colorbar at 0x7f6804ebbb90>
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markers[markers==3] = 2
ws = watershed(im,markers)
markers[markers==3] = 2
ws = watershed(im,markers)
/home/olivier/.conda/envs/py3/lib/python3.7/site-packages/skimage/morphology/_deprecated.py:5: skimage_deprecation: Function ``watershed`` is deprecated and will be removed in version 0.19. Use ``skimage.segmentation.watershed`` instead. def watershed(image, markers=None, connectivity=1, offset=None, mask=None,
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plt.imshow(ws)
plt.imshow(mark_boundaries(im,ws))
plt.imshow(ws)
plt.imshow(mark_boundaries(im,ws))
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<matplotlib.image.AxesImage at 0x7f6804f96190>
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# segment the cell
im = imread('../data/brain.jpg')[:,:,0]
plt.figure(figsize=(10,10))
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
# segment the cell
im = imread('../data/brain.jpg')[:,:,0]
plt.figure(figsize=(10,10))
plt.imshow(im,cmap=plt.cm.gray)
plt.colorbar();
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plt.hist(im.flatten(),255);
plt.hist(im.flatten(),255);
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from skimage.filters import threshold_otsu
t_otsu = threshold_otsu(im)
t_otsu
from skimage.filters import threshold_otsu
t_otsu = threshold_otsu(im)
t_otsu
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36
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th = im > t_otsu
plt.figure(figsize=(10,10))
plt.imshow(th)
th = im > t_otsu
plt.figure(figsize=(10,10))
plt.imshow(th)
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<matplotlib.image.AxesImage at 0x7f6804a20a50>
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lab = label(th,connectivity=1)
plt.imshow(lab)
lab = label(th,connectivity=1)
plt.imshow(lab)
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<matplotlib.image.AxesImage at 0x7f68047b4cd0>
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from skimage.measure import regionprops
from skimage.measure import regionprops
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props = regionprops(lab)
brain = (lab==7).astype(np.uint8)
pp = skr.maximum(brain,disk(3))
pp = skr.minimum(pp,disk(3))
plt.imshow(pp)
props = regionprops(lab)
brain = (lab==7).astype(np.uint8)
pp = skr.maximum(brain,disk(3))
pp = skr.minimum(pp,disk(3))
plt.imshow(pp)
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<matplotlib.image.AxesImage at 0x7f6804733cd0>
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for p in props:
print(p.area, p.label)
for p in props:
print(p.area, p.label)
1459 1 5 2 1 3 3 4 1 5 16 6 6323 7 1 8 2 9 1 10 1 11 1 12 1 13 16 14 1 15 1 16 1 17 2 18 2 19 2 20 2 21 30 22 1 23 1 24 1 25 1 26 2 27 2 28 5 29 1 30 1 31 2 32 1 33 13 34
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